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基于人工蜂群优化的混合 CNN-RNN 算法用于眼底图像中渗出物的精确分类。

Artificial Humming Bird Optimization-Based Hybrid CNN-RNN for Accurate Exudate Classification from Fundus Images.

机构信息

Department of Electronics and Communication Engineering, Mohamed sathak engineering college, Kilakarai, Tamil Nadu, India.

Department of Computer Science and Engineering, Rajalakshmi Engineering College, Thandalam, Chennai, Tamil Nadu, India.

出版信息

J Digit Imaging. 2023 Feb;36(1):59-72. doi: 10.1007/s10278-022-00707-7. Epub 2022 Oct 14.

Abstract

Diabetic retinopathy is the predominant cause of visual impairment in diabetes patients. The early detection process can prevent diabetes patients from severe situations. The progression of diabetic retinopathy is determined by analyzing the fundus images, thus determining whether they are affected by exudates or not. The manual detection process is laborious and requires more time and there is a possibility of wrong predictions. Therefore, this research focuses on developing an automated decision-making system. To predict the existence of exudates in fundus images, we developed a novel technique named a hybrid convolutional neural network-recurrent neural network along with the artificial humming bird optimization (HCNNRNN-AHB) approach. The proposed HCNNRNN-AHB technique effectively detects and classifies the fundus image into two categories namely exudates and non-exudates. Before the classification process, the optic discs are removed to prevent false alarms using Hough transform. Then, to differentiate the exudates and non-exudates, color and texture features are extracted from the fundus images. The classification process is then performed using the HCNNRNN-AHB approach which is the combination of CNN and RNN frameworks along with the AHB optimization algorithm. The AHB algorithm is introduced with this framework to optimize the parameters of CNN and RNN thereby enhancing the prediction accuracy of the model. Finally, the simulation results are performed to analyze the effectiveness of the proposed method using different performance metrics such as accuracy, sensitivity, specificity, F-score, and area under curve score. The analytic result reveals that the proposed HCNNRNN-AHB approach achieves a greater prediction and classification accuracy of about 97.4%.

摘要

糖尿病性视网膜病变是糖尿病患者视力损害的主要原因。早期检测过程可以防止糖尿病患者的病情恶化。糖尿病性视网膜病变的进展是通过分析眼底图像来确定的,从而确定它们是否受到渗出物的影响。手动检测过程既费力又费时,而且存在预测错误的可能性。因此,本研究专注于开发自动化决策系统。为了预测眼底图像中是否存在渗出物,我们开发了一种名为混合卷积神经网络-递归神经网络与人工蜂群优化(HCNNRNN-AHB)方法的新技术。所提出的 HCNNRNN-AHB 技术能够有效地检测和分类眼底图像,分为渗出物和非渗出物两类。在分类过程之前,使用 Hough 变换去除视盘以防止误报。然后,从眼底图像中提取颜色和纹理特征,以区分渗出物和非渗出物。然后使用 HCNNRNN-AHB 方法(即 CNN 和 RNN 框架的组合)进行分类过程,并结合 AHB 优化算法。HB 算法被引入到该框架中,以优化 CNN 和 RNN 的参数,从而提高模型的预测准确性。最后,使用不同的性能指标(如准确性、敏感性、特异性、F 分数和曲线下面积分数)进行模拟结果分析,以评估所提出方法的有效性。分析结果表明,所提出的 HCNNRNN-AHB 方法实现了约 97.4%的更高预测和分类准确性。

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